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arxiv: 1708.04391 · v1 · pith:7TLD3BMQnew · submitted 2017-08-15 · 💻 cs.AI · cs.RO

Learning body-affordances to simplify action spaces

classification 💻 cs.AI cs.RO
keywords methodbody-affordancesactionlearningn-dimensionalsensorspacetarget
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Controlling embodied agents with many actuated degrees of freedom is a challenging task. We propose a method that can discover and interpolate between context dependent high-level actions or body-affordances. These provide an abstract, low-dimensional interface indexing high-dimensional and time- extended action policies. Our method is related to recent ap- proaches in the machine learning literature but is conceptually simpler and easier to implement. More specifically our method requires the choice of a n-dimensional target sensor space that is endowed with a distance metric. The method then learns an also n-dimensional embedding of possibly reactive body-affordances that spread as far as possible throughout the target sensor space.

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